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Minimal Neural Network Conditions for Encoding Future Interactions
S. Diez-Hermano, G. Aparicio-Rodriguez, P. Manubens, A. Sanchez-Jimenez, C. Calvo-Tapia, D. Levcik, JA. Villacorta-Atienza
Language English Country Singapore
Document type Journal Article
- MeSH
- Humans MeSH
- Brain physiology MeSH
- Neural Networks, Computer * MeSH
- Memory physiology MeSH
- Decision Making physiology MeSH
- Learning physiology MeSH
- Time Perception physiology MeSH
- Space Perception physiology MeSH
- Check Tag
- Humans MeSH
- Publication type
- Journal Article MeSH
Space and time are fundamental attributes of the external world. Deciphering the brain mechanisms involved in processing the surrounding environment is one of the main challenges in neuroscience. This is particularly defiant when situations change rapidly over time because of the intertwining of spatial and temporal information. However, understanding the cognitive processes that allow coping with dynamic environments is critical, as the nervous system evolved in them due to the pressure for survival. Recent experiments have revealed a new cognitive mechanism called time compaction. According to it, a dynamic situation is represented internally by a static map of the future interactions between the perceived elements (including the subject itself). The salience of predicted interactions (e.g. collisions) over other spatiotemporal and dynamic attributes during the processing of time-changing situations has been shown in humans, rats, and bats. Motivated by this ubiquity, we study an artificial neural network to explore its minimal conditions necessary to represent a dynamic stimulus through the future interactions present in it. We show that, under general and simple conditions, the neural activity linked to the predicted interactions emerges to encode the perceived dynamic stimulus. Our results show that this encoding improves learning, memorization and decision making when dealing with stimuli with impending interactions compared to no-interaction stimuli. These findings are in agreement with theoretical and experimental results that have supported time compaction as a novel and ubiquitous cognitive process.
References provided by Crossref.org
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